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Community aware random walk for network embedding

机译:社区感知的随机游走网络嵌入

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摘要

Social network analysis provides meaningful information about behavior of network members that can be used for diverse applications such as classification, link prediction. However, network analysis is computationally expensive because of feature learning for different applications. In recent years, many researches have focused on feature learning methods in social networks. Network embedding represents the network in a lower dimensional representation space with the same properties which presents a compressed representation of the network. In this paper, we introduce a novel algorithm named "CARE" for network embedding that can be used for different types of networks including weighted, directed and complex. Current methods try to preserve local neighborhood information of nodes, whereas the proposed method utilizes local neighborhood and community information of network nodes to cover both local and global structure of social networks. CARE builds customized paths, which are consisted of local and global structure of network nodes, as a basis for network embedding and uses the Skip-gram model to learn representation vector of nodes. Subsequently, stochastic gradient descent is applied to optimize our objective function and learn the final representation of nodes. Our method can be scalable when new nodes are appended to network without information loss. Parallelize generation of customized random walks is also used for speeding up CARE.
机译:社交网络分析提供了有关网络成员行为的有意义的信息,可用于各种应用程序,例如分类,链接预测。然而,由于针对不同应用的特征学习,网络分析在计算上是昂贵的。近年来,许多研究都集中在社交网络中的特征学习方法上。网络嵌入在具有相同属性的低维表示空间中表示网络,该属性表示网络的压缩表示。在本文中,我们为网络嵌入引入了一种称为“ CARE”的新颖算法,该算法可用于包括加权,定向和复杂在内的不同类型的网络。当前的方法试图保留节点的本地邻居信息,而所提出的方法利用网络节点的本地邻居和社区信息来覆盖社交网络的本地和全局结构。 CARE建立由网络节点的局部和全局结构组成的自定义路径,作为网络嵌入的基础,并使用Skip-gram模型学习节点的表示向量。随后,应用随机梯度下降来优化我们的目标函数并学习节点的最终表示。当新节点附加到网络时,我们的方法可以扩展,而不会丢失信息。定制的随机游走的并行生成也可用于加速CARE。

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